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Accepted for/Published in: JMIR Research Protocols

Date Submitted: Oct 7, 2022
Date Accepted: Feb 7, 2023

The final, peer-reviewed published version of this preprint can be found here:

Web-Based Patient Recommender Systems for Preventive Care: Protocol for Empirical Research Propositions

Howell P, Aryal A, Wu C

Web-Based Patient Recommender Systems for Preventive Care: Protocol for Empirical Research Propositions

JMIR Res Protoc 2023;12:e43316

DOI: 10.2196/43316

PMID: 36995747

PMCID: 10132006

Online Patient Recommender Systems for Preventive Care: Propositions to Advance Research

  • Pamella Howell; 
  • Arun Aryal; 
  • Crystal Wu

ABSTRACT

Background:

Preventive care aids patients by helping them identify diseases that can cause medical problems before they become serious. The internet provides a wealth of data online about available preventative measures. Unfortunately, Humans’ working memory and reasoning ability cannot process all the data online; therefore, recommender systems assist in processing and providing recommendations from these data. Publications in the recommender system research area are domain-specific and are dominated by service and retail industries with limited publications based in the healthcare context

Objective:

This paper suggests practice-based empirical propositions for developing recommender systems. We also describe a study design, methods for developing a survey, and conducting an analysis

Methods:

We propose using a survey to collect data from approximately 600 participants on Amazon’s M-Turk, then using SAS, STATA, R, or Python to analyze the research model. Researchers should perform a principal component analysis, Harman Single Factor test, exploratory factor analysis, correlational analysis, examine the reliability and convergent validity of individual items, test if multicollinearity exists, and complete a confirmatory factor analysis.

Results:

Data collection and analysis can start once IRB approval is obtained.

Conclusions:

Examining recommender systems for preventative care can be vital in achieving the quadruple aims by advancing the steps toward precision medicine and applying best practices.


 Citation

Please cite as:

Howell P, Aryal A, Wu C

Web-Based Patient Recommender Systems for Preventive Care: Protocol for Empirical Research Propositions

JMIR Res Protoc 2023;12:e43316

DOI: 10.2196/43316

PMID: 36995747

PMCID: 10132006

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